US11344246B2 - Long QT syndrome diagnosis and classification - Google Patents
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/316—Modalities, i.e. specific diagnostic methods
- A61B5/318—Heart-related electrical modalities, e.g. electrocardiography [ECG]
- A61B5/346—Analysis of electrocardiograms
- A61B5/349—Detecting specific parameters of the electrocardiograph cycle
- A61B5/366—Detecting abnormal QRS complex, e.g. widening
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- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/316—Modalities, i.e. specific diagnostic methods
- A61B5/318—Heart-related electrical modalities, e.g. electrocardiography [ECG]
- A61B5/346—Analysis of electrocardiograms
- A61B5/349—Detecting specific parameters of the electrocardiograph cycle
- A61B5/364—Detecting abnormal ECG interval, e.g. extrasystoles, ectopic heartbeats
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- A—HUMAN NECESSITIES
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- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/316—Modalities, i.e. specific diagnostic methods
- A61B5/318—Heart-related electrical modalities, e.g. electrocardiography [ECG]
- A61B5/346—Analysis of electrocardiograms
- A61B5/349—Detecting specific parameters of the electrocardiograph cycle
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/316—Modalities, i.e. specific diagnostic methods
- A61B5/318—Heart-related electrical modalities, e.g. electrocardiography [ECG]
- A61B5/346—Analysis of electrocardiograms
- A61B5/349—Detecting specific parameters of the electrocardiograph cycle
- A61B5/355—Detecting T-waves
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/316—Modalities, i.e. specific diagnostic methods
- A61B5/318—Heart-related electrical modalities, e.g. electrocardiography [ECG]
- A61B5/346—Analysis of electrocardiograms
- A61B5/349—Detecting specific parameters of the electrocardiograph cycle
- A61B5/36—Detecting PQ interval, PR interval or QT interval
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/72—Signal processing specially adapted for physiological signals or for diagnostic purposes
- A61B5/7235—Details of waveform analysis
- A61B5/7239—Details of waveform analysis using differentiation including higher order derivatives
Definitions
- This invention relates to methods for detecting and diagnosing cardiac disease in a subject. More specifically, the invention relates to diagnosing and classifying long QT syndrome in electrocardiogram signals of a subject.
- Electrocardiogram provides valuable information about cardiac electrical activity.
- a wide range of cardiac diseases can be diagnosed by analyzing ECG and its characteristics.
- the ECG is composed of different components including a P wave and a QRS complex followed by a T wave, which represent depolarization/repolarization or contraction of different heart chambers (see FIG. 1 ).
- Most heart related issues can be diagnosed by analyzing the morphology, amplitude, and duration of these waves and time differences between them [1].
- LQTS Long QT Syndrome
- torsades de pointes which is associated with sudden cardiac death.
- LQTS1 LQTS Type 1
- KCNH2 LQTS Type 2
- QT interval is the only standard and universally accepted quantitative measure used for non-invasive diagnosis of LQTS. It is usually measured by an ECG specialist manually, using one of the well-known formulas such as Bazett's formula [3]:
- QTc ⁇ ⁇ ⁇ QT RR , ( 1 )
- QT and RR represent the QT and RR intervals, in seconds
- QTc represents the heart-rate-corrected QT interval. If the maximum QTc measured in an ECG is greater than a threshold (450 ms in males and 470 ms in females), it is typically considered as LQTS [4].
- FIG. 2 The distribution of QTc for genotype-positive LQTS and genotype-negative normal ECGs in a dataset is depicted in FIG. 2 .
- FIG. 2 The distribution of QTc for genotype-positive LQTS and genotype-negative normal ECGs in a dataset is depicted in FIG. 2 .
- FIG. 2 The distribution of QTc for genotype-positive LQTS and genotype-negative normal ECGs in a dataset is depicted in FIG. 2 .
- FIG. 2 The distribution of QTc for genotype-positive LQTS and genotype-negative normal ECGs in a dataset is depicted in FIG. 2 .
- the QTc of around 25% of genotype-positive LQTS patients is in the normal range [2].
- ECG delineation is a challenging task as the morphology, amplitude, and duration of ECG components are variable. Specifically, due to the low amplitude of the P and T waves and smooth transition at their boundaries, the onset and offset points are very difficult to locate even by human experts. This issue becomes even more complicated in presence of noise and baseline wandering. Furthermore, there is no universally acceptable definition of the locations of onset and offset points of ECG components. These facts make automatic ECG delineation a challenging problem.
- One aspect of the invention relates to a method for detecting long QT syndrome in a subject, comprising: obtaining data corresponding to an electrocardiogram (ECG) signal of the subject; identifying a set of features in the data based on selected inflection points of the ECG signal; using the set of features to categorize segments of the ECG signal; using the categorized segments of the ECG signal and the inflection points to classify the ECG signal as normal or as long QT syndrome; wherein long QT syndrome is detected when the subject's ECG signal is classified as long QT syndrome.
- ECG electrocardiogram
- categorizing segments of the ECG signal includes determining beginning and end points of Q and T waves.
- the method may comprise selecting inflection points of the ECG signal by finding zero-crossings of a second derivative of the ECG signal.
- the second derivative of the ECG signal is determined using a finite impulse response (FIR) filter.
- the finite impulse response filter comprises a one-dimensional Laplacian of Gaussian (LoG) filter.
- the second derivative of the ECG signal is determined by eliminating variations of ECG signal concavity created by noise and by eliminating the effect of baseline wandering of the ECG signal.
- the method may further comprise identifying ECG segments enclosed by two consecutive inflection points and categorizing each ECG segment into a cluster selected from P wave, QRS complex, T wave, and baseline.
- categorizing ECG segments is performed according to a multi-dimensional feature space. In one embodiment, categorizing ECG segments is performed according to a four dimensional feature space. In one embodiment, the four dimensional feature space for an ECG segment comprises duration, energy, maximum distance between amplitude of the ECG segment and a line crossing its boundaries, and standard deviation of a parameter of the ECG segment.
- the method may comprise classifying the ECG signal as normal or as LQT syndrome based on two or more features selected from QT interval, base of T wave, rate of T wave fluctuation, slope of T wave at its inflection points, vertical distance between two inflection points at boundaries of the T wave, and heart rate.
- the method may comprise using logistic regression on the two or more features to determine a linear boundary between normal and LQT classes.
- the method may comprise further classifying a LQT syndrome ECG signal as a LQTS1 ECG signal or a LQTS2 ECG signal.
- the method may comprise subjecting the LQT syndrome ECG signal to logistic regression based on a set of features related to T wave morphology.
- the set of features related to T wave morphology comprise number of local peaks, base of the T wave, and difference between the slopes at their boundaries.
- Another aspect of the invention relates to a non-transitory computer-readable medium comprising instructions stored thereon, that when executed by a processor, cause the processor to carry out a method as described herein.
- the instructions cause the processor to: receive data corresponding to an electrocardiogram (ECG) signal of a subject; determine inflection points in the ECG signal; identify a set of features in the data based on the inflection points; use the set of features to categorize segments of the ECG signal; use the categorized segments of the ECG signal and the inflection points to classify the ECG signal as normal or as long QT syndrome; output a result indicating whether the subject's ECG signal is classified as long QT syndrome.
- ECG electrocardiogram
- the instructions cause the processor to output a result indicating whether the subject's ECG signal is classified as long QT syndrome Type 1 or long QT syndrome Type 2.
- Another aspect of the invention relates to an apparatus, comprising a processor, wherein the apparatus is adapted to: receive data corresponding to an electrocardiogram (ECG) signal of a subject; process the ECG data according to a method as descried herein; and output a result indicating whether or not the subject has long QT syndrome.
- ECG electrocardiogram
- FIG. 1 is a diagram showing components and intervals of a normal ECG waveform.
- FIG. 2 is a histogram showing distribution of heart-rate-corrected QT interval (QTc) for genotype-positive LQTS, and genotype-negative normal ECGs.
- QTc heart-rate-corrected QT interval
- FIGS. 3A-3D are diagrams showing different QT interval measurement methods, including threshold (TH), differential threshold (DTH), slope intercept (SI), and peak slope intercept (PSI), respectively.
- TH threshold
- DTH differential threshold
- SI slope intercept
- PSI peak slope intercept
- FIG. 4 is a plot showing an ECG signal with baseline wandering, wherein dots represent inflection points extracted using equation (3) presented herein, and shaded areas show the truncated energy determined according to equation (5) presented herein.
- FIGS. 5A and 5B are plots showing segmentation results for a typical ECG in (A) feature space and (B) time domain.
- FIG. 6 is a chart showing genotype-phenotype correlation in three types of Long QT Syndromes.
- FIG. 7 is a diagram showing inflection points and intervals in an ECG.
- FIG. 8 is a diagram showing inflection points extracted from first (dark dots) and second (gray dots) LoG filters.
- FIG. 9 is a block diagram of a system architecture according to one embodiment.
- FIGS. 10A and 10B show classification accuracy results for (A) normal/abnormal classifier and (B) LQTS type classifier.
- the existing methods suffer from a variety of issues. They are sensitive to low-amplitude T waves, noise, and baseline wandering. Moreover, their accuracy dependents on the threshold levels used for decision making which are mostly adjusted arbitrarily, making most of them semi-automatic algorithms. Furthermore, some of the existing methods require a prior knowledge about the QRS and T waves characteristics, e.g., width and morphology. Pattern recognition methods have also been proposed although they are not accurate in delineating abnormal ECGs. Therefore, a comprehensive automatic approach which is able to deal with different morphologies and amplitude levels of T and QRS waves in noisy ECGs with baseline wandering is highly desirable.
- FIGS. 3A-3D show various clinical approaches practiced by cardiologists for finding the onset/offset of the QRS complex and the T wave, including amplitude threshold (TH; FIG. 3A ), differential threshold (DTH; FIG. 3B ), slope intercept (SI; FIG. 3C ), and peak slope intercept (PSI: FIG. 3D ) [11].
- amplitude threshold TH
- DTH differential threshold
- SI slope intercept
- PSI peak slope intercept
- One aspect of the invention relates to a method for automatically diagnosing and classifying different types of long QT syndrome.
- Embodiments may be implemented in automated systems that diagnose and classify long QT syndrome in patients, and, e.g., are able to identify patients who are at a high risk of mortality.
- the method includes identifying a set of features of an ECG signal based inflection points (IPs) of the ECG signal.
- IPs inflection points
- the set of features is then used to characterize and classify the ECG signal as being long QT syndrome or normal, and Type 1 or Type 2 long QT syndrome.
- IPs inflection points
- the embodiments employ a Laplacian of Gaussian (LoG) filter for inflection point detection.
- LoG Laplacian of Gaussian
- Embodiments described herein overcome this problem by using a one-dimensional LoG filter.
- the LoG is a finite impulse response (FIR) filter which delivers the second derivative of the Gaussian smoothed version of the input signal.
- the Gaussian part of the LoG filter performs as a low-pass filter which eliminates variations of signal concavity created by noise.
- the Laplacian part of the filter performs as a high-pass filter which eliminates the effect of baseline wandering.
- y n ⁇ y n ⁇ 1 ⁇ 0 ⁇ , m 1, . . . , M, (3) where z m contains the time indexes of IPs and N and M represent the number of signal samples and IPs, respectively.
- the ECG segments surrounded by two consecutive IPs are evaluated in order to categorize them into one of four possible clusters: P wave, QRS complex, T wave, and baseline. This is performed using the characteristics of these segments at their IPs.
- FIG. 4 shows an ECG signal as well as its corresponding IPs.
- features may be considered for inclusion in a multi-dimensional feature space, which is then subjected to analysis to diagnose and classify different types of long QT syndrome.
- one or more features may be selected from:
- the second feature used was energy of ECG segments.
- the energy of an ECG segment may be defined as the sum of squared values of that wave. However, because of baseline wandering, this may not be accurate as low-energy waves positioned at higher baseline values may mistakenly be considered as high-energy segments.
- isoelectric segments may represent high energy values. These facts can be observed in FIG. 4 . For example, as seen in FIG. 4 , the isoelectric segment at time 9000 ms has a higher energy than the T wave at time 8000 ms. Therefore, the term “truncated energy” (Em) was defined as the energy concentrated inside each curve of the ECG signal. This energy was measured as the sum of squared distances between the amplitude and the line connecting two IPs at the segment boundaries:
- f s ⁇ z m - z m - 1 ⁇ in (5) is the inverse of the ECG segment duration which normalizes the truncated energy for that segment.
- the truncated energy E m of two T waves is depicted as shaded areas.
- the energy of the first T wave (T i ) is considerably lower than that of the second T wave (T j )
- their truncated energy is almost equal (E i ⁇ E j ).
- the isoelectric segments represent a very low truncated energy while their energy may be high due to baseline variations. This guarantees that ECG waves would fall under the same categories in terms of E m , regardless of baseline wandering.
- the fourth feature that was used is the standard deviation of the ECG segments:
- the four features described above create a multi-dimensional feature space, in this case four-dimensional. Other features may be used, and/or other numbers of features may be used to create a multi-dimensional feature space, as noted above.
- the ECG waves are clustered into the four groups: P, QRS, T and baseline, using their properties in feature space.
- E m is the only feature that takes on negative or positive values, depending of the polarity of ECG segments, while the rest of the features only take on non-negative values. Therefore, E m was normalized in the range of [ ⁇ 1,1] and the rest of the features W m , D m and S m were normalized in the range of [0,1] in order to avoid biasing.
- preliminary analyses showed that ECG waves are more distinguishable in feature space when natural logarithms of features is employed. This is because the natural logarithm compensates for skewing of the features.
- the analyses also reveal that the natural logarithms of features exhibit a distribution of mixture of four Gaussian components, each for one of the P, QRS and T waves and baseline.
- N a multivariate Gaussian distribution with mean ⁇ i and covariance matrix ⁇ i .
- s (s 1 , . . . , s C ) is also a vector of C binary indicator variables which indicates the cluster to which f m belongs.
- r i is the probability that f m belongs to the ith cluster.
- the EM algorithm updates the parameter vector ⁇ using the two steps E and M until the log-likelihood function converges:
- the QT interval is analyzed in order to classify subjects into one of the three categories: Normal, LQTS Type 1 (LQTS1) and LQTS Type 2 (LQTS2).
- the T wave morphology of these three types of LQTS is depicted in FIG. 6 .
- the T wave is typically a prolonged wave with a relatively high amplitude and a wide base.
- no distinct onset and/or end point can be identified for the T wave.
- the T wave is usually a delayed wave with a relatively low amplitude and fluctuations on its peak. Although the onset of the T wave is more obvious in this case, locating the end point is still challenging.
- QT Interval The first feature that needs to be measured is the QT interval.
- the QT interval is measured using this approach.
- the intersection between the maximum negative slope line of the T wave and baseline is defined as the offset of the T wave ( FIG. 7 ).
- the tangent line passing through the IP z k+1 at the end of the T wave (L zk+1 ) is found.
- the average of slopes at, e.g., five samples around z k+1 , i.e., [z k+1 ⁇ 2:z k+1 +2] is used.
- the baseline is also defined as the horizontal line that passes through Q.
- Base of T wave The width of the T wave is another feature which is typically measured from beginning to the end of the T wave. However, as seen in FIG. 6 , the beginning and end of the T wave are not clear in some cases, especially in patients with LQTS1. Hence, the intersection of a tangent line at the left IP of the T wave (L zk ) and the baseline is used as the onset of the T wave (T on in FIG. 7 ). Therefore, the base of the T wave is defined as: T off ⁇ T on .
- the baseline is also defined as the horizontal line that passes through Q on .
- the average of slopes at, e.g., five samples around z k i.e., [z k ⁇ 2:z k +2] is used to make it more robust to the noise.
- Rate of T wave Fluctuations The rate of fluctuations at the peak of the T wave is another feature which is used for distinguishing between LQTS1 and LQTS2. Since the LoG filter applied to the ECG signals is robust to the small fluctuations on the top of the T wave, it cancels them and hence they are not extracted as IPs. However, if another LoG filter with a smaller kernel size (e.g., five samples) is applied to the original signal of the T wave, the noise is reduced but the T wave fluctuations are preserved. Thus, the number of new IPs between the original IPs extracted from the previous LoG filter is used as a new feature. These new IPs are depicted in FIG. 8 as gray dots while the original IPs are depicted as dark dots.
- Slopes at IPs The slopes of the T wave at its IPs are used as two new features. These features may be measured as the slopes of lines L zk and L zk+1 in FIG. 7 . The rate of the difference between the slopes of these two lines is another morphological feature that represents the symmetry between the left and right half of the T wave:
- D SL ( k ) ⁇ slope ⁇ ( L z k ) ⁇ - ⁇ slope ⁇ ( L z k + 1 ) ⁇ ⁇ slope ⁇ ( L z k + 1 ) ⁇ , ( 15 ) where
- Diagnosis of LQTS syndrome is a fundamentally important aspect of embodiments.
- the ability to classify different types of LQTS syndrome is another aspect that is of interest, however, the goal is to identify a potential LQTS patient and refer the patient to the hospital with a high accuracy regardless of the type of LQTS (although it is important to have some information about the type of LQTS). Therefore, in contrast with most of the existing methods in this area, a hierarchical approach is used for diagnosis and classification of LQTS.
- a patient is classified into one of two categories: Normal and LQTS.
- the LQTS patient is classified into one of two groups, LQTS1 and LQTS2.
- a block diagram of an embodiment of the system is depicted in FIG. 9 .
- logistic regression is used for classification, which creates a linear boundary between the different classes.
- the values of the features vary among the heartbeats. Therefore, there is a range of feature values for every patient.
- the expected value and variation of the features are considered as two properties, and the mean and standard deviation of the features is used in the calculations. Hence, for every feature introduced in the method there are two values: mean and standard deviation, making the feature space twice as large.
- LQTS1 and LQTS2 using another logistic regression classifier.
- another set of features related to T wave morphology number of local peaks, base of the T wave, and difference between the slopes at their boundaries
- Embodiments may be implemented using a processor (e.g., a computer, a data processing system, etc.), optionally in conjunction with a graphical user interface (GUI), which may include functions such as receiving input (ECG data, commands from a user of the system, etc.), analyzing data, and displaying results and/or images on a display of the system.
- a processor e.g., a computer, a data processing system, etc.
- GUI graphical user interface
- the processor may receive and/or process data corresponding to an ECG signal of a subject, and/or perform one or more function as described above, and output a result indicating whether long QT syndrome is detected, and optionally whether the long QT syndrome is Type 1 or Type 2.
- the computer includes executable programmed instructions for directing the computer to carry out embodiments of the invention.
- Executing instructions may include the computer prompting the user for input at various steps.
- Programmed instructions may be contained in one or more hardware modules or software modules resident in the memory of the computer or elsewhere.
- Embodiments may include non-transitory programmed media containing instructions.
- the instructions direct the computer to perform one or more of the functions described above, including, for example, one or more of identifying a set of features in the data based on selected inflection points of the ECG signal; using the set of features to categorize segments of the ECG signal; using the categorized segments of the ECG signal and the inflection points to classify the ECG signal as normal or as long QT syndrome, and optionally to further classify the ECG signal as Type 1 or Type 2 long QT syndrome.
- the programmed media may direct the computer to output a result indicating whether long QT syndrome is detected when the subject's ECG signal is classified as long QT syndrome, and optionally whether the long QT syndrome is Type 1 or Type 2.
- FIGS. 10A and 10B An embodiment as described above was implemented using ECG signals collected from 50 patients, using a standard resting 12-lead ECG.
- a confusion matrix of the two classifiers is depicted in FIGS. 10A and 10B .
- the database included ECGs collected from 10 genotype-positive LQTS1 patients, 10 genotype-positive LQTS2 patients, and 30 genotype-negative normal controls. For every patient, 10 seconds of 12-lead ECG signals at a sampling rate of 250 Hz were recorded. A genetic screening result for all patients was also available which was used as a gold standard to confirm the results.
- the first step of the method classified the ECGs into normal and LQTS classes with 100% accuracy. Then, in the second step, the LQTS signals were further classified into Type 1 and Type 2 with 100% accuracy as shown in FIG. 10B . Since the method used logistic regression which creates a linear boundary, the method is robust to the problem of over-fitting.
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Abstract
Description
where QT and RR represent the QT and RR intervals, in seconds, and QTc represents the heart-rate-corrected QT interval. If the maximum QTc measured in an ECG is greater than a threshold (450 ms in males and 470 ms in females), it is typically considered as LQTS [4].
y n=LoGn (σ) *x n (2)
in which * represents the convolution. The IPs are then identified by locating the zero-crossings of yn:
z m={1≤n≤N|y n ·y n−1≤0}, m=1, . . . ,M, (3)
where zm contains the time indexes of IPs and N and M represent the number of signal samples and IPs, respectively. Once the IPs are located, the ECG segments surrounded by two consecutive IPs are evaluated in order to categorize them into one of four possible clusters: P wave, QRS complex, T wave, and baseline. This is performed using the characteristics of these segments at their IPs.
-
- Time distance (duration) between consecutive IPs
- Energy of an ECG segment
- Distance between the maximum amplitude of an ECG segment and a line crossing its boundaries
- Standard deviation of a parameter of one or more of ECG segments
- Heart Rate
- QTc Bazzet (median & upper adjacent)
- QTc Fridericia (median & upper adjacent)
- QTc Framingham (median & upper adjacent)
- QT/RR (median & upper adjacent)
- Number of IPs in T wave (median & upper adjacent)
- Base of T wave (median & upper adjacent)
- Difference between IPs of T wave (median & upper adjacent)
- Difference between slope of IPs of T wave (median & upper adjacent)
- Distance between peaks of T and R waves
In this equation, ln (m) is a linear function representing the line which crosses two consecutive IPs, defined as follows:
Note that the multiplication facto
in (5) is the inverse of the ECG segment duration which normalizes the truncated energy for that segment.
D m max|x n −l n (m) |, z m−1 <n<z m (7)
Where m=[0, 1, 2, . . . , k, . . . , M]]; this distance is shown in
where:
represents the mean of ECG segments. The two previous features are useful for distinguishing between segments with the same energy but different morphologies.
f m=[W m E m D m S m]T (10)
where N represents a multivariate Gaussian distribution with mean μi and covariance matrix Σi. The unknown parameter vector Θ was defined as:
Θ={r 1 , . . . ,r C,μ1, . . . ,μC,Σ1, . . . ,ΣC} (12)
QT=T off −Q on. (14)
The baseline is also defined as the horizontal line that passes through Q.
where |.| represents the absolute value and slope(.) delivers the slope of the lines Lzk and Lzk+1.
D IP (k) =x z
-
- 6) Heart Rate: The feature of heart rate may be measured as follow:
where RR represents the time interval between two consecutive peaks of the R wave in seconds.
LQTS Diagnosis and Classification
In the next step, patients with LQTS estimated from the first step are classified into one of two categories: LQTS1 and LQTS2 using another logistic regression classifier. For this purpose, another set of features related to T wave morphology (number of local peaks, base of the T wave, and difference between the slopes at their boundaries) is used. Similar to the first classifier, the second classifier delivers a vector of weights β=[β0,β1,βM] and classifies the LQTS patients into one of two classes as follows:
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